Scientific applications of the AODE machine learning algorithm
In addition to its many commercial and educational applications, AODE has
been used for machine learning and data mining in a variety of scientific applications. The following are some
publications that report research that uses AODE.
- Affendey, L.S., Paris, I.H.M. Mustapha, N. Sulaiman, M.N., Muda, Z.: Ranking of influencing factors in predicting students academic performance. Inform. Technol. J., 9 (2010) 832-837.
- Baig, Z.A., Shaheen, A.S., AbdelAal, R.: An AODE-based intrusion detection system for computer networks. In Proceedings of the 2011 World Congress on Internet Security (WorldCIS), 2011, 28-35.
- Balaniuk, R., Antonio do Prado, H., da Veiga Guadagnin, R., Ferneda, E., Cobbe, P.: Predicting evasion candidates in higher education institutions. In Proceedings First International Conference on Model and Data Engineering, Obidos, Portugal (2011) 143-151.
- Biemann, C. Co-occurrence cluster features for lexical substitutions in context. Proceedings of TextGraphs-5-2010 Workshop on Graph-based Methods for Natural Language Processing, 2010, 55-59
- Biemann, C.: Word Sense Induction and Disambiguation. Springer-Verlag, Berlin. (2012).
- Birzele, F., Kramer, S.: A new representation for protein
secondary structure prediction based on frequent patterns. Bioinformatics
22(21) (2006)
2628–2634.
- Camporelli, M.: Using a Bayesian Classifier for Probability Estimation: Analysis
of the AMIS Score for Risk Stratification in Myocardial Infarction.
Diploma Thesis, Department of Informatics, University of Zurich (2006).
- Correa, S., Cerqueira, R.: Statistical Approaches to Predicting and Diagnosing Performance Problems in Component-Based Distributed Systems: An Experimental Evaluation. In Proceedings 4th IEEE International Conference on Self-Adaptive and Self-Organizing Systems (SASO), (2010) 21-30.
- Ferrari, L.D., Aitken, S.: Mining housekeeping genes with a
naive Bayes classifier. BMC Genomics 7(1)
(2006) 277.
- Flikka, K., Martens, L., Vandekerckhove, J., Gevaert, K.,
Eidhammer, I.: Improving the reliability and throughput of mass
spectrometry-based proteomics by spectrum quality filtering. Proteomics
6(7) (2006)
2086–2094.
- Garcia, B., Aler, R., Ledezma, A., Sanchis, A.:
Protein-protein functional association prediction using genetic programming. In:
Proceedings of the Tenth Annual Conference on Genetic and Evolutionary
Computation, New York, NY, USA, ACM. (2008) 347–348.
- García-Jiménez B, Juan D, Ezkurdia I, Andrés-León E, Valencia A.: Inference of Functional Relations in Predicted Protein Networks with a Machine
Learning Approach. PLoS ONE (2010) 5(4): e9969. doi:10.1371/journal.pone.0009969
- Hopfgartner, F., Urruty, T., Lopez, P.B., Villa, R., Jose, J.M: Simulated evaluation of faceted browsing based on feature selection. Multimedia Tools and Applications 47(3) (2010) 631-662.
- Hunt, K.: Evaluation of Novel Algorithms to Optimize Risk
Stratification Scores in Myocardial Infarction. PhD thesis, Department of
Informatics, University of Zurich (2006).
-
Kluwer, Tina, Uszkoreit, Hans and Xu, Feiyu:
Using syntactic and semantic based relations for dialogue act recognition.
In Proceedings of the 23rd International Conference on Computational Linguistics: Posters
(2010) 570-578.
- Kovacs, G., Hajdu, A.: Extraction of vascular system in retina images using Averaged One-Dependence Estimators and orientation estimation in Hidden Markov Random Fields. In: Proc. 2011 IEEE Int. Symp. Biomedical Imaging (2011) 693.696.
- Kunchevaa, L.I., Vilas, V.J.D.R., Rodriguezc, J.J.:
Diagnosing scrapie in sheep: A classification experiment. Computers in Biology
and Medicine 37(8)
(2007) 1194–1202.
- Kurz, D., Bernstein, A., Hunt, K., Radovanovic, D., Erne,
P., Siudak, Z., Bertel, O.: Simple point-of-care risk stratification in acute
coronary syndromes: the AMIS model. British Medical Journal 95(8) (2009) 662.
- Lasko, T.A., Atlas, S.J., Barry, M.J., Chueh, K.H.C.:
Automated identification of a physician’s primary patients. Journal of the
American Medical Informatics Association 13(1)
(2006) 74–79.
- Lau, Q.P., Hsu, W., Lee, M.L., Mao, Y., Chen, L.: Prediction
of cerebral aneurysm rupture. In: Proceedings of the nineteenth IEEE
International Conference on Tools with Artificial Intelligence, Washington, DC,
USA, IEEE Computer Society (2007) 350–357.
- Leon, E.A., Ezkurdia, I., Garcia, B., Valencia, A., Juan, D.:
EcID. A database for the inference of functional interactions in E. coli.
Nucleic Acids Research 37(Database issue)
(2009) D629.
- Liew, CY., Ma, XH., Yap, CW.: Consensus model for identification of novel PI3K inhibitors in large chemical library. Journal of Computer-Aided Molecular Design. 24(2) (2010) 131-141.
- Marincic, D., Tusar, T., Gams, M., Sef, T.: Analysis of Automatic Stress Assignment in
Slovene. Informatica 20(1) (2009) 35-50.
- Masegosa, AR., Joho, H., Jose JM.: Evaluating Query-Independent Object Features for Relevancy Prediction. In Advances in Information Retrieval. Springer Berlin. (2007) 283-294.
- Najadat, H, Alsmadi, I.: Enhance Rule Based Detection for Software Fault Prone Modules. International Journal of Software Engineering and Its Applications 6(1) (2012) 75-84.
- Nikora, A.P.: Classifying requirements: Towards a more
rigorous analysis of natural-language specifications. In: Proceedings of the
Sixteenth IEEE International Symposium on Software Reliability Engineering,
Washington, DC, USA, IEEE Computer Society (2005) 291–300.
- Orhan, Z., Altan, Z.: Impact of feature selection for
corpus-based WSD in Turkish. In: Proceedings of the fifth Mexican International
Conference on Artificial Intelligence, Springer Berlin / Heidelberg (2006)
868–878.
- Shahri, SH., Jamil, H.: An Extendable Meta-learning Algorithm for Ontology Mapping. In Flexible Query Answering Systems, Springer Berlin (2009) 418-430.
- Simpson, M., Demner-Fushman, D., Sneiderman, C., Antani, S.,
Thoma, G.: Using non-lexical features to identify effective indexing terms for
biomedical illustrations. In: Proceedings of the 12th Conference of the European
Chapter of the Association for Computational Linguistics, Association for
Computational Linguistics (2009) 737–744.
- Speckauskiene, V., Lukosevicius, A.: Methodology of Adaptation of Data Mining Methods for Medical Decision Support: Case Study. Electronics and Electrical Engineering 90 (2009) 25-28.
- Tenório, J.; Hummel, A.; Cohrs, F.; Sdepanian, V.; Pisa, I. & de Fátima Marin, H. Artificial intelligence techniques applied to the development of a decision-support system for diagnosing celiac disease. International Journal of Medical Informatics, Elsevier, 2011
- Tian, Y., Chen, C., Zhang, C: AODE for Source Code Metrics for Improved Software Maintainability. Fourth International Conference on Semantics, Knowledge and Grid (2008) pp.330-335.
- Wang, H., Klinginsmith, J., Dong, X., Lee, A., Guha, R., Wu,
Y., Crippen, G., Wild, D.: Chemical data mining of the NCI human tumor cell line
database. Journal of Chemical Information and Modeling 47(6) (2007)
2063–2076.
- Yang, Y.; Li, Z.; Nan, P. & Zhang, X. Drug-induced glucose-6-phosphate dehydrogenase deficiency-related hemolysis risk assessment. Computational Biology and Chemistry, 2011, 35, 189 - 192